Reinforcement learning is an area of machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.

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Implementing the actor-critic reinforcement learning algorithm to deal with perturbation on a nao robot [on hold]

There is an implementation of a 3-tier architecture of a CPG on the robot am working on. The cpg architecture is explained in the video below: https://www.youtube.com/watch?v=VG6wczzJ4uY This cpg ...
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25 views

NLTK NER: Continuous Learning

I have been trying to use NER feature of NLTK. I want to extract such entities from the articles. I know that it can not be perfect in doing so but I wonder if there is human intervention in between ...
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49 views

How do you update the weights in function approximation with reinforcement learning?

My SARSA with gradient-descent keep escalating the weights exponentially. At Episode 4 step 17 the value is already nan Exception: Qa is nan e.g: 6) Qa: Qa = -2.00890180632e+303 7) NEXT Qa: Next ...
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36 views

How are eligibility traces with sarsa calculated?

Regarding SARSA with reinforcement learning, I'm trying to implement eligibility traces (forward looking). I found this image: I'm uncertain what the 'For all s,a:" means (5th line from below) ...
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67 views

Best/Easiest module for AI Learning? [closed]

I read this How can I make a AI learn to play a game from zero? A little example, let's say the AI goes to play blackjack, discount all the splits, cards in the deck and so on, the AI could either ...
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64 views

Is there a better way than this to implement Softmax Action Selection for Reinforcement Learning?

I am implementing Softmax Action Selection policy for a reinforcement learning task (http://webdocs.cs.ualberta.ca/~sutton/book/ebook/node17.html). I came with this solution, but I think there is ...
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52 views

3D-Space learning and prediction Matlab

I want suggestions about learning and predicting some object's position before hitting the one out of four sides of wall, in Matlab. I have some priority according to side of wall, and of-course all ...
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2answers
54 views

PyBrain Reinforcement Learning Input Buffer Incorrect

I am trying to set up PyBrain for reinforcement learning, but keep on getting the same error when I try to get an action for the first time. This line in module.py is throwing an assert failure ...
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59 views

Reinforcement Learning for Continuous State Spaces with Discrete Actions (in NetLogo)

For anybody unfamiliar, NetLogo is an agent-based modeling language. In this case the agents are simulating organisms in a dynamic environment where they search for energy. The energy moves ...
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74 views

Neural Network and Temporal Difference Learning

I have a read few papers and lectures on temporal difference learning (some as they pertain to neural nets, such as the Sutton tutorial on TD-Gammon) but I am having a difficult time understanding the ...
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59 views

Momentum in neural networks

Neural networks and momentum Should the momentum factor preferably relate to [both the dataset instance and the individual weights] or [just the weights]. Eg: def get_momentum( instance, weight ): ...
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51 views

is Q-learning without a final state even possible?

I have to solve this problem with Q-learning. Well, actually I have to evaluated a Q-learning based policy on it. I am a tourist manager. I have n hotels, each can contain a different number of ...
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1answer
54 views

Q-Learning convergence to optimal policy

I am using rlglue based python-rl framework for q-learning. My understanding is that over number of episodes, the algorithm converges to an optimal policy (which is a mapping which says what action to ...
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2answers
134 views

Optimal epsilon (ϵ-greedy) value

ϵ-greedy policy I know the Q-learning algorithm should try to balance between exploration and exploitation. Since I'm a beginner in this field, I wanted to implement a simple version of ...
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1answer
41 views

Q-learning: What is the correct state for reward calculation

Q learning - rewards I'm struggling to interpret the pseudocode for the Q learning algorithm: 1 For each s, a initialize table entry Q(a, s) = 0 2 Observe current state s 3 Do forever: 4 ...
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263 views

When to use a certain Reinforcement Learning algorithm?

I'm studying Reinforcement Learning and reading Sutton's book for a university course. Beside the classic PD, MC, TD and Q-Learning algorithms, I'm reading about policy gradient methods and genetic ...
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1answer
93 views

Q-Learning: Can you move backwards?

I'm looking over a sample exam and there is a question on Q-learning, I have included it below. In the 3rd step, how come the action taken is 'right' rather than 'up' (back to A2). It appears the Q ...
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1answer
224 views

Q Learning Algorithm Issue

I'm trying to do a simple Q learning algorithm, but for whatever reason it doesn't converge. The agent should basically get from one point on the 5x5 grid to the goal one. When I run it it seems to ...
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1answer
45 views

What are the things that I should save to a file/db with Reinforcement Learning?

I'm trying to get into machine learning, and decided to try things out for myself. I wrote a small tic-tac-toe game. So far, the computer plays against itself using random moves. Now, I want to apply ...
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1answer
145 views

Implementing reinforcement learning in NetLogo (Learning in multi-agent models)

I am thinking to implement a learning strategy for different types of agents in my model. To be honest, I still do not know what kind of questions should I ask first or where to start. I have two ...
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49 views

Parametrization of sparse sampling algorithms

I have a question about the parametrization of C, H and lambda in the paper: "A Sparse Sampling Algorithm for Near-Optimal Planning in Large Markov Decision Processes" (or for anyone with some general ...
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1answer
818 views

Reinforcement Learning

I want to use this q-learning (reinforcement learning) code. It seems like the code is correct, but I am getting errors and I don't know why: function q=ReinforcementLearning clc; format short; ...
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115 views

Encog : Reinforcement Learning / Actor-Critic Model

I have a basic neural net problem where I want a "rocket" to maintain it's altitude at a given height. (This is a simple version of the problem, it will get more complex). I am using the encog ...
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150 views

Q-learning (multiple goals)

i have just started to study Q-learning and see the possibilities of using Q-learning to solve my problem. Problem: I am supposed to detect a certain combination of data, i have four matrices that ...
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1answer
98 views

How to apply reinforcement learning?

I understand it in concept. You have an agent and an environment. And then you have a set of states, which each have a value. The agent then either choses to "explore" or "exploit" and modifies it's ...
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117 views

How to calculate the value function in reinforcement learning

Could anybody help to explain how to following value function been generated, the problem and solution are attached, I just don't know how the solution is generated. thank you! STILL NEED HELP ...
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90 views

Memory error after running pyBrain NFQ learner for a few minutes

O. Using reinforcement learning from pyBrain we are trying to solve a game. We use NFQ and an ActionValueNetwork as controller. We have our self-made task and are using the experiment setup from ...
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2answers
52 views

Reinforcement Learning without Successor State

I'm attempting to pose a problem as a reinforcement learning problem. My difficulty is that the state which an agent is in changes randomly. They must simply choose an action within the state they are ...
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2answers
288 views

n-armed bandit simulation in R

I'm using Sutton & Barto's ebook Reinforcement Learning: An Introduction to study reinforcement learning. I'm having some issues trying to emulate the results (plots) on the action-value page. ...
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156 views

Setting gamma and lambda in Reinforcement Learning

In any of the standard Reinforcement learning algorithms that use generalized temporal differencing (e.g. SARSA, Q-learning), the question arises as to what values to use for the lambda and gamma ...
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127 views

Qlearning - Defining states and rewards

I need some help with solving a problem that uses the Q-learning algorithm. Problem description: I have a rocket simulator where the rocket is taking random paths and also crashes sometimes. The ...
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60 views

Learning of Outcome Space Given Noisy Actions and Non-Monotonic Reinforcment

I'm looking to construct or adapt a model preferably based in RL theory that can solve the following problem. Would greatly appreciate any guidance or pointers. I have a continuous action space, ...
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1answer
260 views

Berkeley Pac-Man Project: features divided through by 10

I am busy coding reinforcement learning agents for the game Pac-Man and came across Berkeley's CS course's Pac-Man Projects, specifically the reinforcement learning section. For the approximate ...
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303 views

SARSA algorithm for average reward problems

My question is about using the SARSA algorithm in reinforcement learning for an undiscounted, continuing (non-episodic) problem (can it be used for such a problem?) I have been studying the textbook ...
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289 views

Training Neural Networks with big linear output

I am programming a Feed Forward Neural Network which I want to use in combination with Reinforcement Learning. I have one hidden layer with tanh as activation function and a linear output layer. I ...
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132 views

Action constraints in actor-critic reinforcement learning

I've implemented the natural actor-critic RL algorithm on a simple grid world with four possible actions (up,down,left,right), and I've noticed that in some cases it tends to get stuck oscillating ...
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1answer
228 views

Weight update - Reinforcement Learning + Neural Networks

I am currently trying to understand how TD-Gammon works and have two questions: 1) I found an article which explains the weight update. It consists of three part. The last part is an differentiation ...
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307 views

How to implement Q-learning with a neural network?

I have created a neural network with 2 inputs nodes, 4 hidden nodes and 3 output nodes. The initial weights are random between -1 to 1. I used backpropagation method to update the network with TD ...
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1answer
1k views

Q-Learning in combination with neural-networks (rewarding understanding)

As far as my understanding is, it's possible to replace a look-up-table for Q-values (state-action-pair-evaluation) by a neural network for estimating these state-action pairs. I programmed a small ...
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1answer
201 views

Multi-Criteria Optimization with Reinforcement Learning

I am working on the power management of a system. The objectives that I am looking to minimize are power consumption and average latency. I have a single objective function having the linearly ...
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350 views

Unbounded increase in Q-Value, consequence of recurrent reward after repeating the same action in Q-Learning

I'm in the process of development of a simple Q-Learning implementation over a trivial application, but there's something that keeps puzzling me. Let's consider the standard formulation of Q-Learning ...
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338 views

Policy iteration on 4x3 grid world

I am supposed to come up with an mdp agent that uses policy iteration and value iteration for an assignment and compare its performance with the utility value of a state. So how does a mdp agent, ...
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553 views

Can evolutionary computation be a method of reinforcement learning?

I am working on a project, a simulated robot learns to do something by neuroevolution So, where is evolutionary computation? Is it a method of reinforcement learning? Or a separate method of machine ...
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767 views

a variation of Windy gridworld game problem in reinforcement learning with my matlab code

In reinforcement learning, a typical example is the windy gridworld And I face with a new variation of windy gridworld, which additionally has a wall and stochastic wind, I am stuck in these two new ...
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557 views

A policy iteration problem in reinforcement learning

I have to solve a problem with policy iteration, the model is showed in and I make a Java program to simulate, the policy algorithm is based on Sutton and Barto's book on Reinforcement learning. ...
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1answer
468 views

PyBrain Reinforcement Learning - Maze and Graph

I was trying to implement in PyBrain something similar to a Maze problem. However, it's more similar to a room with an emergency exit, where you leave an agent in one of the rooms to find the exit. To ...
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214 views

Ultimate Jedi challenge - Multiarmed Bandit / Reinforcement Learing/ Advanced AI with a lighsaber twist [closed]

This question was orignaly posted on cstheory but I believe the community of stackoverflow can also help. Any inspiration is warmly welcome. To the point. Imagine a following scenario (Long time ...
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651 views

Q-learning value update

I am working on the power management of a device using Q-learning algorithm. The device has two power modes, i.e., idle and sleep. When the device is asleep, the requests for processing are buffered ...
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124 views

Boltzman exploration with more than two actions in Q-learning

I am using Boltzman exploration in Q-learning where I have at least 10 actions in each state. I know that with only two actions, Boltzman exploration can be applied quite simply as follows: ...
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1answer
570 views

Reinforcement learning methodes that map continuous to continuous

I am building a model where firms have to set prices and make production decisions. Prices are continuous and so are the decision variables. (inventory, last sales, prices...). What reinforcement ...